📘Learn Digital Making weekly on Telegram. Join Channel Now📱
New A206 Jetson Modules Carrier Board

A206 Jetson Modules Carrier Board

    • Login to view ProMaker's Insider Price!
    • RM899.00
    • Cashback: RM26.97
    • CytronCash Balance: Login
    • Availability:
      5
    • Product Code: JN-CB-A206
    • Warranty Period: 12 months

    Note: Power cable is not included. However, we are giving the power cable as a FREE GIFT.


    A206 is a high-performance, interface rich NVIDIA Jetson Nano / Xavier NX/ TX2 NX compatible carrier board, providing HDMI 2.0, Gigabit Ethernet, USB3.0, M.2 key E wifi / BT, M.2 key MCSI camera, CAN, GPIO, I2C, I2S, pin for fan, and other rich peripheral interfaces. It has the same functional design and size as the carrier board of NVIDIA® Jetson Xavier™ NX Developer Kit.  

    Basically, it can work with an NVIDIA Jetson module mentioned above to achieve graphic AI applications. To be more specific, with the NVIDIA Jetson Nan/Xavier NX/TX2 NX module assembled, it could support NVIDIA JetPack, which includes a board support package (BSP), Linux OS, NVIDIA CUDA®, cuDNN, and TensorRT™ software libraries for deep learning, computer vision, GPU computing, multimedia processing, and much more. With its multiple camera connectors, it is suitable for complicated AI graphical applications such as Automated Optical Inspection, In Video Action, Robot control, Drone, etc. Overall, A206 is ideal for software development within the Linux environment. Standard connectors are used to access Jetson Xavier NX features and interfaces, enabling a highly flexible and extensible development platform.

     

    Hardware overview:

    Note: A206 Jetson Modules Carrier Board has nearly the same design as NVIDIA Jetson Xavier NX Developer Kit Carrier Board, open this link and login to get what you need.

    Dimension:

     

    Features:

    • Exact same size and functional design as Nvidia’s official carrier board
    • Higher performance stability consists of 4 USB ports and HDMI+DP ports
    • Data can be saved for 24 hours after the power is cut off if batteries are increased
    • High versatility, suitable for complicated AI graphical applications
    • Compatible with  NVIDIA® Jetson™ Nano/NX/TX2 NX SOM

    I/O ports:

    • Display Port:
      • 1 x HDMI
      • 1 x Display port
    • USB
      • 4 x USB 3.0 Type-A Connector
      •  
      • 1 x USB Micro B, RA Female
    • NVIDIA Gigabit Ethernet
      • 1 x RJ45 Gigabit Ethernet Connector (10/100/1000)
    • DC Power
      • 1 x DC Input Power TE Connector
      • FAN Connect
        • 1 x Picoblade Header
      • M.2 KEY E
        • 1 x M.2 Key E Connectivity Slot (75-pin)
      • M.2 KEY M
        • 1 x M.2 Key M Slot (75-pin)  NVME 2280
      • CSI Camera Connect
        • 2 x CSI Camera (15 pos, 1mm pitch, MIPI CSI-2 )
      • Multifunctional port
        • 2.0 Pitch 40 PIN
        • NVIDIA Jetson Nano/NX/TX2 NX connector
          • 1 x Jetson SODIMM connector, 260-pin
        • CAN
          • 1 x CAN Bus Header (1x4, 2.54mm pitch, RA)
        • Button Header
          • 1 x Button Header (1x12, 2.54mm pitch, RA)
          • RTC
            • 1 x RTC Back-up Coin Cell Socket (CR1225)

          Note: 

          1. When using Jetson Nano, the M.2 E KEY does not work, but M.2 KEY M works.
          2. The 3V RTC battery is NOT included in the packing list.

          Applications

          • Industrial Automation
          • Robotics
          • Computer Vision
          • Drone
          • Automated Optical Inspection
          • Sentiment Analysis

           

          Packing list:

          • 1 x A206 Carrier Board
          • 1 x Power Adapter 90W 19V
            Note: Power cable is not included. However, we are giving the power cable as a FREE GIFT

           

          Resources:

          No questions have been asked about this product.

          Ask a question

          Note: HTML is not translated!
          • 0 out of 5
                          
          Total Reviews (0)
          • 5
            0%
          • 4
            0%
          • 3
            0%
          • 2
            0%
          • 1
            0%

          Tags: NVIDIA, AI, artificial inteligence, machine learning, deep learning, Seeed, SOM, System on Module